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Perceptual Processes

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Perceptual Processes

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    1. 1 Perceptual Processes Introduction Pattern Recognition Top-down Processing & Pattern Recognition Face Perception Attention Divided attention Selective attention Theories of attention

    2. 2 Perception Process that uses our previous knowledge to gather and interpret the stimuli that our senses register

    3. 3 Pattern Recognition The identification of a complex arrangement of sensory stimuli

    4. 4 Patterns

    5. 5 Glory may be fleeting…

    6. 6 The Letter Z

    7. 7 Theories of Pattern Recognition Template Matching Theory Prototype Models Distinctive Features Model Recognition by Components Model

    8. 8 Template Matching Theory Compare a new stimulus (e.g. ‘T’ or ‘5’) to a set of specific patterns stored in memory Stored pattern most closely matching stimulus identifies it. To work – must be single match Used in machine recognition

    9. 9 Examples of Template Matching Attempts

    10. 10 Used in machine recognition

    11. 11 Problems for Template Matching Inefficient - large # of stored patterns required Extremely inflexible Works only for isolated letters and simple objects

    12. 12 Prototype Theories Store abstract, idealized patterns (or prototypes) in memory Summary - some aspects of stimulus stored but not others Matches need not be exact

    13. 13 Forming Prototypes Faces--Faces Animated Version

    14. 14 Forming Prototypes of Faces

    15. 15 Prototypes Family resemblances (e.g. birds, faces, etc.) Evidence supporting prototypes Problems - Vague; not a well-specified theory of pattern recognition

    16. 16 Distinctive Features Models Comparison of stimulus features to a stored list of features Distinctive features differentiate one pattern from another Can discriminate stimuli on the basis of a small # of characteristics – features Assumption: feature identification possible

    17. 17 Distinctive Features Models: Evidence Consistent with physiological research Psychological Evidence Gibson 1969 Neisser 1964 Waltz 1975 Pritchard 1961

    18. 18 Visual Cortex Cell Response

    19. 19 Gibson--Distinctive Features

    20. 20 Letter Scanning Example

    21. 21 Letter Detection Task

    22. 22 How a Distinctive Features Model Might Work:

    23. 23 Distinctive Features Theory must specify how the features are combined/joined These models deal most easily with fairly simple stimuli -- e.g. letters Shapes in nature more complex -- e.g. dog, human, car, telephone, etc What would the features here be?

    24. 24 Recognition by Components Model Irving Biederman (1987, 1990) Given view of object can be represented as arrangement of basic 3-D shapes (geons) Geons = derived features or higher level features In general 3 geons usually sufficient to identify an object

    25. 25 Examples of Geons

    26. 26 Status of Recognition by Components Theory Distinctive features theory for 3-D object recognition Some research consistent with the model; some not

    27. 27 Recognition by Components Pro – Biederman found that obscuring vertices impairs objects recognition while obscuring other parts of objects has a lesser effect.

    28. 28 Support for Biederman

    29. 29 Summary Distinctive Features approach currently strongest theory Perhaps all 3 approaches (distinctive features, prototypes, recognition by components) are correct Regardless, pattern recognition is too rapid and efficient to be completely explained by these models

    30. 30 Two types of Processing Bottom-up or data-driven processing Top-down or conceptually driven processing Theme 5 -- most tasks involve bottom-up and top-down processing

    31. 31 Thought Experiment Assume each letter 5 feature detections involved Page of text approximately 250-300 words of 5 letters per word on average Each page: 5 x 5 x 250-300 = 6250 - 7500 feature detections Typical reader 250 words/min reading 6250/60 secs =100 feature detections per second

    32. 32 Ambiguous Stimulus -The Man Ran

    33. 33 Ambiguous Stimulus - The Cat in the Hat

    34. 34 Fido is Drunk

    35. 35 Reversible Figure and Ground

    36. 36 Word Superiority Effect We can identify a single letter more rapidly and more accurately when it appears in a word than when it appears in a non-word.

    37. 37 Word Superiority- Non-word Trial

    38. 38 Word Superiority: Word Trial

    39. 39 Single Letter ‘K’ vs ‘K’ in a word

    40. 40 Word Superiority: Single Letter Trial

    41. 41 Word Superiority: Word Trial

    42. 42 Altered Sentences in Warren and Warren (1970)

    43. 43 The Effect of Varying Sentence Frame Context on Interpreting an Ambiguous Stimulus The __________ raised (________) to supplement his income.

    44. 44 The Influence of Stimulus Features & Sentence Context on Word Identification

    45. 45 Attention

    46. 46 Definitions of Attention Concentration of mental resources Allocation of mental resources

    47. 47 Divided Attention

    48. 48 Reinitz & Colleagues (1974)

    49. 49 Proportion of Responses that were “old” for Each of Two Study Conditions and Two Test Conditions (Reinitz & Colleagues, 1994).

    50. 50 Divided Attention & Practice Hirst, et. al. 1980 Spelke, 1976

    51. 51 Upset Hotel Judge Employment Map Indulge Pencil Problem Key Terrible

    52. 52 Selective Attention

    53. 53 Selective Attention (Dichotic Listening Task) Shadowing Irrelevant Channel Cocktail Party Effect - Morray (1959) Wood and Cowan (1995) Treisman (1960)

    54. 54 Dichotic Listening Task

    55. 55 Cocktail Effect

    56. 56 Treisman’s Shadowing Study

    57. 57 Stroop Effect

    58. 58 Filter Models of Attention

    59. 59 Capacity Model of Attention

    60. 60 Diagnostic Criteria for Automatic Processes

    61. 61 Cerebral Cortex & Attention

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